Analysis of color features performance using support vector machine with multi-kernel for batik classification

E. Winarno, W. Hadikurniawati, Anindita Septiarini, H. Hamdani
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引用次数: 3

Abstract

Batik is a sort of cultural heritage fabric that originated in many areas of Indonesia. It can be traced back to many different parts of Indonesia. Each region, particularly Semarang in Central Java, Indonesia, has its Batik design. Unfortunately, due to a lack of knowledge, not all residents can recognize the types of Semarang batik. Therefore, this study proposed an automated method for classifying Semarang batik. Semarang batik was classified into five categories according to this method: Asem Arang, Blekok Warak, Gambang Semarangan, Kembang Sepatu, and Semarangan. It is required to analyze the color features based on the color space to develop discriminative features since color was able to differentiate these batik patterns. Color features were produced based on the RGB, HSV, YIQ, and YCbCr color spaces. Four different kernels were used to feed these features into the Support Vector Machine (SVM) classifier: linear, polynomial, sigmoid, and radial basis functions. The experiment was carried out using a local dataset of 1000 batik images classified into five classes (each class contains 200 images). A cross-validation test with a k-fold value of 10 was performed to analyze the method. In each of the SVM Kernels, the results showed that the proposed method achieved an accuracy value of 100% by utilizing the YIQ color space, which was reliable throughout all the tests.
基于多核支持向量机的蜡染分类颜色特征性能分析
蜡染是一种文化遗产织物,起源于印度尼西亚的许多地区。它可以追溯到印度尼西亚的许多不同地区。每个地区,尤其是印尼中爪哇的三宝垄,都有自己的蜡染图案。不幸的是,由于缺乏知识,并非所有居民都能识别三宝垄蜡染的类型。因此,本研究提出了一种自动分类三宝垄蜡染的方法。根据这种方法,三宝垄蜡染分为五类:Asem Arang, Blekok Warak, Gambang三宝垄干,Kembang Sepatu和三宝垄干。由于颜色可以区分这些蜡染图案,因此需要根据颜色空间分析颜色特征来开发区别特征。颜色特征是基于RGB、HSV、YIQ和YCbCr颜色空间产生的。使用四种不同的核将这些特征输入支持向量机(SVM)分类器:线性,多项式,sigmoid和径向基函数。实验使用1000张蜡染图像的本地数据集进行,该数据集分为五类(每类包含200张图像)。采用k-fold值为10的交叉验证试验对方法进行分析。在每个SVM核中,结果表明,该方法利用YIQ颜色空间获得了100%的准确率值,在所有测试中都是可靠的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
CiteScore
3.00
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